基于监督学习的湿疹皮损自动分割与分类

H. Nisar, Y. Ch'ng, Yeap Kim Ho
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引用次数: 7

摘要

本文的目的是开发一种全自动的湿疹皮损分割方法。我们研究了三种监督学习的病灶分割方法:支持向量机(SVM)、Naïve贝叶斯分类器(NBC)和k -最近邻(KNN)。使用两组不同红斑严重程度(轻度,中度)的图像来训练监督分类器。从训练图像中提取108个特征,使用四种特征排序方法(标准差、t统计评分、fisher评分和相关系数)对特征进行排序,获得最显著的特征。利用RGB的绿色通道和CSN-I RGB颜色空间对分类性能进行了研究。通过将分割病灶与金标准分割图像进行比较,评估不同方法的性能。通过比较发现,SVM分类器的分割准确率为84.43%,而NBC分类器和KNN分类器的分割准确率分别为82.77%和83.53%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Segmentation And Classification Of Eczema Skin Lesions Using Supervised Learning
In this paper our aim is to develop a fully automated eczema skin lesion segmentation method. We have studied three supervised learning methods for segmentation of lesions: Support Vector Machine (SVM), Naïve Bayesian Classifier (NBC) and K-Nearest Neighbor (KNN). Two sets of images that are different in erythema severity levels (mild, moderate) are used for training the supervised classifiers. From the training images 108 features are extracted that are ranked using four feature ranking methods (standard deviation, T-statistical score, fisher scoring, and correlation coefficient) to obtain the most significant features. The performance of classification is investigated using green channel of RGB and CSN-I RGB color space. The performance of the different methods is assessed by comparing the segmented lesions with the gold standard segmented images. Based on these comparisons, it is observed that SVM classifier shows the best segmentation result having an accuracy of 84.43% whereas the accuracy of NBC and KNN is 82.77% and 83.53% respectively.
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